Pattern Recognition and Machine Learning
(Same as Statistics M231A.) Lecture, three hours; discussion, one hour. Designed for graduate students. Fundamental concepts, theories, and algorithms for pattern recognition and machine learning that are used in computer vision, image processing, speech recognition, data mining, statistics, and computational biology. Topics include Bayesian decision theory, parametric and nonparametric learning, clustering, complexity (VC-dimension, MDL, AIC), PCA/ICA/TCA, MDS, SVM, boosting. S/U or letter grading.
Review Summary
- Clarity
-
N/A
- Organization
-
N/A
- Time
-
N/A
- Overall
-
N/A
Course
Previous Grades
Grade distributions not available.